Symposium on neural network dynamics

Research output: Chapter in Book/Report/Conference proceedingConference contribution

Abstract

The resurgence of artificial neural networks in the past decade has affected basic and applied research in neural and cognitive sciences and has generated numerous models that address centuries old questions confronted by neuroscientists and neural engineers. Computational and silicon based models involving dynamics of neural networks play increasingly larger roles in the quantitative formulation of these questions. Topics such as perception, consciousness, memory and will are no longer quantitatively untouchable subjects. They can be formulated with biologically realistic models and tested experimentally. The emerging discipline of neural network dynamics strives to understand the organizational principles and underlying mechanisms of the biology and behavior of neural systems in nature. It coalesces the new emerging fields in engineering and physical sciences including nonlinear dynamics, chaos, wavelets and time-frequency distributions, informatics, silicon and nanotechnologies with the molecular, cellular, systems physiology, cognitive and behavioral neuroscience. To highlight this emerging discipline, we devote this symposium to the neural network dynamics related research.

Original languageEnglish (US)
Title of host publicationAnnual Reports of the Research Reactor Institute, Kyoto University
Pages4100
Number of pages1
Volume4
StatePublished - 2001
Externally publishedYes
Event23rd Annual International Conference of the IEEE Engineering in Medicine and Biology Society - Istanbul, Turkey
Duration: Oct 25 2001Oct 28 2001

Other

Other23rd Annual International Conference of the IEEE Engineering in Medicine and Biology Society
CountryTurkey
CityIstanbul
Period10/25/0110/28/01

Fingerprint

Neural networks
Silicon
Physiology
Nanotechnology
Chaos theory
Dynamic models
Data storage equipment
Engineers

ASJC Scopus subject areas

  • Energy Engineering and Power Technology
  • Mechanical Engineering

Cite this

Ozdamar, O. (2001). Symposium on neural network dynamics. In Annual Reports of the Research Reactor Institute, Kyoto University (Vol. 4, pp. 4100)

Symposium on neural network dynamics. / Ozdamar, Ozcan.

Annual Reports of the Research Reactor Institute, Kyoto University. Vol. 4 2001. p. 4100.

Research output: Chapter in Book/Report/Conference proceedingConference contribution

Ozdamar, O 2001, Symposium on neural network dynamics. in Annual Reports of the Research Reactor Institute, Kyoto University. vol. 4, pp. 4100, 23rd Annual International Conference of the IEEE Engineering in Medicine and Biology Society, Istanbul, Turkey, 10/25/01.
Ozdamar O. Symposium on neural network dynamics. In Annual Reports of the Research Reactor Institute, Kyoto University. Vol. 4. 2001. p. 4100
Ozdamar, Ozcan. / Symposium on neural network dynamics. Annual Reports of the Research Reactor Institute, Kyoto University. Vol. 4 2001. pp. 4100
@inproceedings{ea5ac07dc4f1432eb3bd0aa8257b48b1,
title = "Symposium on neural network dynamics",
abstract = "The resurgence of artificial neural networks in the past decade has affected basic and applied research in neural and cognitive sciences and has generated numerous models that address centuries old questions confronted by neuroscientists and neural engineers. Computational and silicon based models involving dynamics of neural networks play increasingly larger roles in the quantitative formulation of these questions. Topics such as perception, consciousness, memory and will are no longer quantitatively untouchable subjects. They can be formulated with biologically realistic models and tested experimentally. The emerging discipline of neural network dynamics strives to understand the organizational principles and underlying mechanisms of the biology and behavior of neural systems in nature. It coalesces the new emerging fields in engineering and physical sciences including nonlinear dynamics, chaos, wavelets and time-frequency distributions, informatics, silicon and nanotechnologies with the molecular, cellular, systems physiology, cognitive and behavioral neuroscience. To highlight this emerging discipline, we devote this symposium to the neural network dynamics related research.",
author = "Ozcan Ozdamar",
year = "2001",
language = "English (US)",
volume = "4",
pages = "4100",
booktitle = "Annual Reports of the Research Reactor Institute, Kyoto University",

}

TY - GEN

T1 - Symposium on neural network dynamics

AU - Ozdamar, Ozcan

PY - 2001

Y1 - 2001

N2 - The resurgence of artificial neural networks in the past decade has affected basic and applied research in neural and cognitive sciences and has generated numerous models that address centuries old questions confronted by neuroscientists and neural engineers. Computational and silicon based models involving dynamics of neural networks play increasingly larger roles in the quantitative formulation of these questions. Topics such as perception, consciousness, memory and will are no longer quantitatively untouchable subjects. They can be formulated with biologically realistic models and tested experimentally. The emerging discipline of neural network dynamics strives to understand the organizational principles and underlying mechanisms of the biology and behavior of neural systems in nature. It coalesces the new emerging fields in engineering and physical sciences including nonlinear dynamics, chaos, wavelets and time-frequency distributions, informatics, silicon and nanotechnologies with the molecular, cellular, systems physiology, cognitive and behavioral neuroscience. To highlight this emerging discipline, we devote this symposium to the neural network dynamics related research.

AB - The resurgence of artificial neural networks in the past decade has affected basic and applied research in neural and cognitive sciences and has generated numerous models that address centuries old questions confronted by neuroscientists and neural engineers. Computational and silicon based models involving dynamics of neural networks play increasingly larger roles in the quantitative formulation of these questions. Topics such as perception, consciousness, memory and will are no longer quantitatively untouchable subjects. They can be formulated with biologically realistic models and tested experimentally. The emerging discipline of neural network dynamics strives to understand the organizational principles and underlying mechanisms of the biology and behavior of neural systems in nature. It coalesces the new emerging fields in engineering and physical sciences including nonlinear dynamics, chaos, wavelets and time-frequency distributions, informatics, silicon and nanotechnologies with the molecular, cellular, systems physiology, cognitive and behavioral neuroscience. To highlight this emerging discipline, we devote this symposium to the neural network dynamics related research.

UR - http://www.scopus.com/inward/record.url?scp=0035782043&partnerID=8YFLogxK

UR - http://www.scopus.com/inward/citedby.url?scp=0035782043&partnerID=8YFLogxK

M3 - Conference contribution

AN - SCOPUS:0035782043

VL - 4

SP - 4100

BT - Annual Reports of the Research Reactor Institute, Kyoto University

ER -